Question: Suppose that we have a 2-dimensional data set . We transform each data point as follows: , where , , are constant values. This is
Suppose that we have a 2-dimensional data set . We transform each data point as follows: , where , , are constant values. This is a linear transformation, because our transformed data comes from simple operations that use 'first powers' of the original data. If our given data set is linearly separable, does the same hold true for the transformed set? In the following cells you can plot a transformed version of the Iris dataset, so that you see how it behaves (for your choice of , , .) But you should also try and justify your answer in a theoretical way: if there exists a 'good' perceptron for the original data set, what would be the weights for the perceptron that works on the transformed set? Are there any issues that might arise? (1) Give your own answer to the above question. (2) What happens when you use an LLM such as ChatGPT to answer the question? Is the LLM's answer fully correct? If not, what mistake(s) did it make
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